基于强化学习方法的中等复杂停车场景自动停车仿真

Baramee Thunyapoo, Chatree Ratchadakorntham, Punnarai Siricharoen, Wittawin Susutti
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引用次数: 4

摘要

在智能城市中,自动停车系统对于减少等待停车或寻找停车位的时间至关重要。在中等复杂的停车场景中,我们提出了使用近端策略优化(PPO)进行深度强化学习的自动泊车仿真框架,其中包括基本停车区域和具有挑战性的停车区域。探索了不同的配置,包括稀疏和密集奖励结合检查点,方向奖励和保持碰撞惩罚。在基本停车区内,停车成功率高达95%以上。对于更困难的停车区域,当每个区域单独训练时,模型效果更好。
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Self-Parking Car Simulation using Reinforcement Learning Approach for Moderate Complexity Parking Scenario
Autonomous parking system is essential in reducing time for waiting to park in the parking spaces or looking for space, particularly in the smart city. We propose the auto-parking car simulation framework using proximal policy optimization (PPO) for deep reinforcement learning in a moderately complex parking scenario which comprises basic and challenging zones for parking. Different configurations are explored including sparse and dense rewards combining with checkpoints, orientation reward and stay-in-collision punishment. It shows high success parking rate in a basic parking zone up to at more than 95%. For the more difficult parking zone, the model works better when each zone is trained separately.
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